Extracting Economic Signals from Central Bank Speeches

M. Ahrens, Michael McMahon
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引用次数: 2

Abstract

Estimating the effects of monetary policy is one of the fundamental research questions in monetary economics. Many economies are facing ultra-low interest rate environments ever since the global financial crisis of 2007-9. The Covid pandemic recently reinforced this situation. In the US and Europe, interest rates are close to (or even below) zero, which limits the scope of traditional monetary policy measures for central banks. Dedicated central bank communication has hence become an increasingly important tool to steer and control market expectations these days. However, incorporating central bank language directly as features into economic models is still a very nascent research area. In particular, the content and effect of central bank speeches has been mostly neglected from monetary policy modelling so far. With our paper, we aim to provide to the research community a novel, monetary policy shock series based on central bank speeches. We use a supervised topic modeling approach that can deal with text as well as numeric covariates to estimate a monetary policy signal dispersion index along three key economic dimensions: GDP, CPI and unemployment. This “dispersion shock” series is not only more frequent than series that classically focus on policy announcement dates, it also opens up the possibility of answering new questions that have up until now been difficult to analyse. For example, do markets form different expectations when facing a “cacophony of policy voices”? Our initial findings for the US point towards the fact that more dispersed or incongruent monetary policy stance communication in the build up to Federal Open Market Committee (FOMC) meetings might be associated with stronger subsequent market surprises at FOMC policy announcement time.
从央行讲话中提取经济信号
货币政策效果的估计是货币经济学的基本研究问题之一。自2007- 2009年全球金融危机以来,许多经济体都面临着超低利率环境。最近的Covid大流行加剧了这种情况。在美国和欧洲,利率接近(甚至低于)零,这限制了央行传统货币政策措施的范围。因此,专门的央行沟通已成为当今引导和控制市场预期的越来越重要的工具。然而,将央行语言直接作为特征纳入经济模型仍然是一个非常新兴的研究领域。特别是,迄今为止,货币政策模型大多忽略了央行讲话的内容和效果。在我们的论文中,我们的目标是为研究界提供一个基于央行讲话的新颖的货币政策冲击系列。我们使用监督主题建模方法,该方法可以处理文本和数字协变量,以估计货币政策信号分散指数沿三个关键经济维度:GDP, CPI和失业率。这种“分散冲击”系列不仅比传统上关注政策宣布日期的系列更为频繁,而且还提供了回答迄今为止难以分析的新问题的可能性。例如,当面对“政策声音的杂音”时,市场是否会形成不同的预期?我们对美国的初步调查结果表明,在联邦公开市场委员会(FOMC)会议之前,货币政策立场沟通更加分散或不一致,可能会导致FOMC政策宣布时市场出现更大的意外。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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